ABSTRACT
Cloud computing is becoming popular. Building
high-quality cloud applications is a critical research problem. QoS rankings provide
valuable information for making optimal cloud service selection from a set of
functionally equivalent service candidates. To obtain QoS values, real-world
invocations on the service candidates are usually required. To avoid the
time-consuming and expensive real-world service invocations, this paper
proposes a QoS ranking prediction framework for cloud services by taking
advantage of the past service usage experiences of other consumers. Our
proposed framework requires no additional invocations of cloud services when
making QoS ranking prediction. Two personalized QoS ranking prediction
approaches are proposed to predict the QoS rankings directly. Comprehensive
experiments are conducted employing real-world QoS data, including 300
distributed users and 500 real world web services all over the world. The
experimental results show that our approaches outperform other competing
approaches.
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